2006
DOI: 10.1137/040619193
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Frequency Domain Optical Tomography Based on the Equation of Radiative Transfer

Abstract: Abstract. Optical tomography consists of reconstructing the spatial distribution of absorption and scattering properties of a medium from surface measurements of transmitted light intensities. Mathematically, this problem amounts to parameter identification for the equation of radiative transfer (ERT) with diffusion-type boundary measurements. Because they are posed in the phase-space, radiative transfer equations are quite challenging to solve computationally. Most past works have considered the steady-state … Show more

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Cited by 139 publications
(118 citation statements)
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“…The regularization term R(σ) is selected as the Tikhonov regularization functional, the L 2 norm of ∇σ. We solve the above least-square problem with a quasi-Newton type of iterative scheme implemented in [20].…”
Section: Numerical Experimentsmentioning
confidence: 99%
“…The regularization term R(σ) is selected as the Tikhonov regularization functional, the L 2 norm of ∇σ. We solve the above least-square problem with a quasi-Newton type of iterative scheme implemented in [20].…”
Section: Numerical Experimentsmentioning
confidence: 99%
“…Details on how to obtain the derivative with respect to optical properties can be found in Ref. 8. The overall flowchart for an image reconstruction algorithm that makes use of the parametric-DCT method is presented in Fig.…”
Section: Ot With Parametric-dct Methodsmentioning
confidence: 99%
“…The methods employed to solve this problem include the non-linear conjugate-gradient method [3], Gauss-Newton based methods [4][5][6][7], the L-BFGS method [8][9][10][11][12], shape-based reconstruction method [13,14] or, in a Bayesian framework, the approximation error method [15,16]. Regarding the first three listed methods, some problems remain to be overcome such as the stability with respect to the initial guesses and the blurring effect of the reconstructed images due to the need for relatively strong regularization tools [17,14].…”
Section: Introductionmentioning
confidence: 99%